Introduction & Data-Analytic Thinking Flashcards
1
Q
CRRISP DM
A
- business understanding: Define the problem to be solved, the scope
- Data understanding: what data are available data and its strengths and limitations
- Data Preparation: aggregated, manipulated, normalised
- modelling: Create the models, use different data mining techniques
- Evaluation: assess the outcome of the modelling stage and determine whether the models are useful to help solve the problem
- deployment: results of the data mining output are put into real use in production
2
Q
Different types of analytics
A
- descriptive analytics: what happened? use data visualization, clustering, and co-occurrence grouping
- predictive analytics: what will happen? use classification, regression, link prediction
- diagnostic analytics: why did it happen? casual analysis, simulation
- prescriptive analytics: how can we make it happen? uplift modeling, automation